Abstract
Typical seismic waveform datasets comprise from hundreds of thousands to
several millions records. Compilation is performed by time-consuming
handpicking of phase arrival times, or signal processing algorithms such
as cross-correlation. The latter generally underperform compared to
handpicking. However, inconsistencies across and within handpicked
datasets creates disagreement between observations and interpretation of
Earth’s structure. Here, we exploit the pattern recognition capabilities
of Convolutional Neural Networks (CNN). Using a large global handpicked
dataset, we train a CNN model to identify the seismic shear phase SS.
This accelerates, automates, and makes consistent data compilation. The
CNN model is then employed to identify precursors to SS generated by
mantle discontinuities. The model identifies precursors in stacked and
individual seismograms, producing new measurements of the mantle
transition zone with quality comparable to handpicked data. The
capability to rapidly obtain new, high-quality observations has
implications for automation of future seismic tomography inversions and
body wave studies.